1.宁波大学土木工程与地理环境学院,浙江 宁波 315211
2.湖南智谋规划工程设计咨询有限责任公司, 湖南 株洲 412000
张夏阳(1999—),男,硕士研究生。主要从事非饱和土力学方面的试验研究。E-mail:2219950752@qq.com
高游(1989—),男,副教授,博士。主要从事非饱和土力学方面的研究。E-mail:gaoyou@nbu.edu.cn
收稿:2024-05-31,
修回:2024-07-11,
纸质出版:2025-02-15
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张夏阳,高游,于响等.基于机器学习算法的非饱和土水特征曲线预测[J].防灾减灾工程学报,2025,45(01):104-109.
ZHANG Xiayang,GAO You,YU Xiang,et al.Prediction of Unsaturated Soil Water Characteristic Curve Based on Machine Learning Algorithms[J].Journal of Disaster Prevention and Mitigation Engineering,2025,45(01):104-109.
张夏阳,高游,于响等.基于机器学习算法的非饱和土水特征曲线预测[J].防灾减灾工程学报,2025,45(01):104-109. DOI: 10.13409/j.cnki.jdpme.20240531003.
ZHANG Xiayang,GAO You,YU Xiang,et al.Prediction of Unsaturated Soil Water Characteristic Curve Based on Machine Learning Algorithms[J].Journal of Disaster Prevention and Mitigation Engineering,2025,45(01):104-109. DOI: 10.13409/j.cnki.jdpme.20240531003.
土水特征曲线(SWCC)是研究非饱和土渗透、强度预测与本构关系的基础。机器学习算法具有高效处理大量数据和特征提取等特点。采用六种机器学习算法(四种集成学习和两种传统机器学习算法)对美国非饱和土数据库中的154条SWCC包含1976个数据点进行模拟;并使用四个性能评价指标(
R
2
、EVS、MAE和RMSE)评价算法的性能。选取两种数据输入的方式:对压力水头进行对数处理和未处理两类。结果表明,在两种输入情况下,对LightGBM、XGB、RF和AdaBoost算法的影响很小;但是对GPR和SVM两种传统机器学习算法的影响很大,在未进行对数处理情况下,
R
2
降低明显甚至会出现无法模拟SWCC的情况。此外,LightGBM对SWCC测试集的模拟效果上均优于其他模型,拥有高的趋势评价指标(
R
2
和EVS)和低的误差测量指标(MAE和RMSE);六种算法对SWCC模拟的优劣的排列顺序依次为:LightGBM、GPR、XGB、RF、AdaBoost和SVM。最后,利用已训练好的LightGBM模型对9条不包含在数据库内的SWCC数据进行预测,结果显示LightGBM能够较好地预测非饱和土的土水特性。研究结果对提升不同类型土的SWCC预测具有重要的指导意义。
The soil water characteristic c
urve (SWCC) is fundamental for studying the permeability
strength prediction
and constitutive relationships of unsaturated soils. Machine learning algorithms are characterized by their efficiency in large dataset processing and feature extraction. This study used six machine learning algorithms (four ensemble learning and two traditional machine learning algorithms) to simulate 154 SWCCs with 1976 data points from the United States Unsaturated Soil Database. Four performance evaluation indicators (
R
2
EVS
MAE
and RMSE) were used to assess the algorithms' performance. Two types of data input methods were selected: one with logarithmic processing of matric suction
and the other without any transformation. The results showed that
under both input types
the effect on the LightGBM
XGB
RF
and AdaBoost algorithms was minimal. However
the two traditional machine learning algorithms
GPR and SVM
were significantly affected. Without logarithmic transformation
R
2
decreased noticeably
and in some cases
the SWCC could not be simulated. Additionally
LightGBM outperformed other models in simulating the SWCC for the test set
with higher trend evaluation indicators (
R
2
and EVS) and lower error measurement indicators (MAE and RMSE). The ranking of the six algorithms in terms of SWCC simulation performance was as follows: LightGBM
GPR
XGB
RF
AdaBoost
and SVM. Finally
the trained LightGBM model was used to predict 9 SWCC datasets not included in the original database. The results showed that LightGBM could effectively predict the soil water characteristics of unsaturated soils. The findings provide important guidance for improving SWCC predictions for different types of soils.
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